Abstract
Abstract Motivation: Kernel methods such as support vector machines require a kernel function between objects to be defined a priori. Several works have been done to derive kernels from probability distributions, e.g., the Fisher kernel. However, a general methodology to design a kernel is not fully developed. Results: We propose a reasonable way of designing a kernel when objects are generated from latent variable models (e.g., HMM). First of all, a joint kernel is designed for complete data which include both visible and hidden variables. Then a marginalized kernel for visible data is obtained by taking the expectation with respect to hidden variables. We will show that the Fisher kernel is a special case of marginalized kernels, which gives another viewpoint to the Fisher kernel theory. Although our approach can be applied to any object, we particularly derive several marginalized kernels useful for biological sequences (e.g., DNA and proteins). The effectiveness of marginalized kernels is illustrated in the task of classifying bacterial gyrase subunit B (gyrB) amino acid sequences. Contact: koji.tsuda@aist.go.jp Keywords: kernel design; marginalized kernels; the Fisher kernel; biological sequence classification; string kernels.
Dates
Type | When |
---|---|
Created | 14 years, 3 months ago (May 9, 2011, 4:43 p.m.) |
Deposited | 2 years, 7 months ago (Jan. 25, 2023, 2:29 a.m.) |
Indexed | 2 months, 1 week ago (June 26, 2025, 8:47 a.m.) |
Issued | 23 years, 2 months ago (July 1, 2002) |
Published | 23 years, 2 months ago (July 1, 2002) |
Published Online | 23 years, 2 months ago (July 1, 2002) |
Published Print | 23 years, 2 months ago (July 1, 2002) |
@article{Tsuda_2002, title={Marginalized kernels for biological sequences}, volume={18}, ISSN={1367-4803}, url={http://dx.doi.org/10.1093/bioinformatics/18.suppl_1.s268}, DOI={10.1093/bioinformatics/18.suppl_1.s268}, number={suppl_1}, journal={Bioinformatics}, publisher={Oxford University Press (OUP)}, author={Tsuda, Koji and Kin, Taishin and Asai, Kiyoshi}, year={2002}, month=jul, pages={S268–S275} }